论文标题

深度学习基于等离子体断层扫描的破坏前体的分析

Deep Learning for the Analysis of Disruption Precursors based on Plasma Tomography

论文作者

Ferreira, Diogo R., Carvalho, Pedro J., Sozzi, Carlo, Lomas, Peter J., Contributors, JET

论文摘要

正在开发喷气基线场景,以实现高融合性能和持续的融合功率。但是,随着血浆电流和更高的输入功率,观察到脉搏破坏的增加。尽管可能存在多种可能的破坏原因,但目前的破坏似乎与辐射现象密切相关,例如杂质积累,核心辐射和辐射性崩溃。在这项工作中,我们专注于重建等离子体辐射谱的螺旋表断层扫描,最重要的是,我们应用异常检测以识别主要干扰之前的辐射模式。该方法广泛使用机器学习。首先,我们基于基质乘法来训练血浆层析成像的替代模型,该模型提供了一种快速方法,可以在任何给定脉冲的整个范围内计算血浆辐射谱。然后,我们通过将它们编码为潜在分布并随后将其解码来训练一个变异自动编码器来重现辐射曲线。作为一个异常检测器,变异自动编码器难以再现异常行为,不仅包括实际的破坏,还包括其前体。这些前体是基于对JET的两个近期运动中所有基线脉冲的异常得分的分析来识别的。

The JET baseline scenario is being developed to achieve high fusion performance and sustained fusion power. However, with higher plasma current and higher input power, an increase in pulse disruptivity is being observed. Although there is a wide range of possible disruption causes, the present disruptions seem to be closely related to radiative phenomena such as impurity accumulation, core radiation, and radiative collapse. In this work, we focus on bolometer tomography to reconstruct the plasma radiation profile and, on top of it, we apply anomaly detection to identify the radiation patterns that precede major disruptions. The approach makes extensive use of machine learning. First, we train a surrogate model for plasma tomography based on matrix multiplication, which provides a fast method to compute the plasma radiation profiles across the full extent of any given pulse. Then, we train a variational autoencoder to reproduce the radiation profiles by encoding them into a latent distribution and subsequently decoding them. As an anomaly detector, the variational autoencoder struggles to reproduce unusual behaviors, which includes not only the actual disruptions but their precursors as well. These precursors are identified based on an analysis of the anomaly score across all baseline pulses in two recent campaigns at JET.

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